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Prediction and Optimization of Surface Roughness in a Turning Process Using the ANFIS-QPSO Method

机译:使用ANFIS-QPSO方法在转弯过程中表面粗糙度的预测与优化

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摘要

This study presents a prediction method of surface roughness values for dry and cryogenic turning of AISI 304 stainless steel using the ANFIS-QPSO machine learning approach. ANFIS-QPSO combines the strengths of artificial neural networks, fuzzy systems and evolutionary optimization in terms of accuracy, robustness and fast convergence towards global optima. Simulations revealed that ANFIS-QPSO results in accurate prediction of surface roughness with RMSE = 4.86%, MAPE = 4.95% and R = 0.984 for the dry turning process. Similarly, for the cryogenic turning process, ANFIS-QPSO resulted in surface roughness predictions with RMSE = 5.08%, MAPE = 5.15% and R = 0.988 that are of high agreement with the measured values. Performance comparisons between ANFIS-QPSO, ANFIS, ANFIS-GA and ANFIS-PSO suggest that ANFIS-QPSO is an effective method that can ensure a high prediction accuracy of surface roughness values for dry and cryogenic turning processes.
机译:本研究介绍了使用ANFIS-QPSO机器学习方法的AISI 304不锈钢干燥和低温转动的表面粗糙度值的预测方法。 ANFIS-QPSO将人工神经网络,模糊系统和进化优化的优点相结合,在准确性,稳健性和快速收敛方面对全球最佳的贡献。仿真显示,ANFIS-QPSO导致对干式工艺的RMSE = 4.86%,MAPE = 4.95%和r = 0.984的表面粗糙度准确预测。类似地,对于低温转弯过程,ANFIS-QPSO导致RMSE = 5.08%的表面粗糙度预测,MAPE = 5.15%和r = 0.988与测量值高。 ANFIS-QPSO,ANFIS,ANFIS-GA和ANFIS-PSO之间的性能比较表明ANFIS-QPSO是一种有效的方法,可以确保干燥和低温转动过程的表面粗糙度值的高预测精度。

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